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Chapter 9: Genetic linkage and maps in breeding applications

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1 Chapter 9: Genetic linkage and maps in breeding applications
BSA for finding a linked marker Construction of genetic linkage maps and tagging economically important genes Introgression QTL-analysis

2 Genetic linkage 2nd law of Mendel: independent segregation of 2 loci.
Is valid for loci on different chromosomes or far apart on the same chromosome. Two loci closely together are physically and genetically linked, i.e. they segregate together. Recombination can unlink 2 loci by a cross-over

3 Genetic linkage The recombination frequency depends on the distance on the chromosome. The distance along a genetic map is measured in terms of the frequency of recombination between genetic markers. This is called the genetic distance (different from the genetic distance in Chapter 8). 1 cM (centiMorgan) corresponds to 1 recombinant in 100 (1% recombination). To analyse linkage of genes or markers, a ‘mapping population’ is needed. This is a progeny from a cross between parents that are different enough to have many polymorphisms segregating.

4 Mapping populations Genetic linkage F2 population Backcross population
AA x BB AB AA AB BB Backcross population AA x BB AB x AA AB AA BC1 Cross pollinator AB x CD AC AD BC BD

5 Genetic linkage The probability of double recombination (same result for 2 markers as no recombination) is proportional to the square of the recombination distance between two loci. Formulas for the estimation of recombination distance (bv. Kosambi, Haldane) adjust for the possibility of double recombination.

6 If higher precision is required, more individuals should be analysed
 Genetic linkage The precision with which genetic distance is measured, is directly related to the number of individuals which is studied (if no recombinants found a sample of 20 progeny plants => recombination fraction = 0; but analyzing 80 additional individuals 1 recombinant can appear => recombination fraction = 1). Typically a primary genetic map is constructed based on individuals, permitting to detect recombination between markers 1-3 cM apart. If higher precision is required, more individuals should be analysed

7 Creation of a Linkage map + mapping of the trait
 Genetic linkage Creation of a Linkage map + mapping of the trait The chromosomal location of a ‘phenotype’ or a ‘mutation’ is determined by identifying nearby genetic markers which are co-transmitted from parent to progeny with the phenotype Requires extensive phenotyping and genotyping of many plants of a mapping (=segregating) population Typical experiment: parents and >100 offspring plants + hundreds to thousands of molecular markers

8 Adapted from Paterson (1996).
 Genetic linkage Recurrent parent A C D Donor parent F1 hybrid 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 Backcross (F1 x recurrent parent) progeny : 3 SSR markers + 1 phenotypic trait Number of recombinants: AC = 6/20 (1, 3, 10, 13, 18, 19) AD = 4/20 (1, 3, 10, 13) CD = 2/20 C = 1/20 (plant number 18) D = 1/20 (plant number 19) A D C 4/20 2/20 6/20 Adapted from Paterson (1996).

9 Creation of a Linkage map + mapping of the trait
 Genetic linkage Creation of a Linkage map + mapping of the trait Main disadvantage: large progenies and many DNA-markers are required => time-consuming and expensive For some applications, not necessary to know the location of the trait (or linked marker) on a linkage map => Alternative approach developed (Bulk segregant analysis = BSA)

10 Bulk Segregant Analysis - Definition
 BSA Bulk Segregant Analysis - Definition Bulk: it makes use of bulked samples => saves time and money Segregant: it makes use of a segregating population => but it does not require map information!!! Analysis: it screens the whole genome Typical experiment: parents and 2 bulks + hundreds to thousands of molecular markers

11  BSA BSA compares 2 pooled DNA samples of individuals from a segregating population originating from a single cross Within each bulk the individuals are identical for the locus of interest but are arbitrary for all other loci Markers polymorphic between the pools are markers putatively linked to the locus involved in the trait of interest Parents Segregating population Bulks R S

12 At a locus linked to the trait, using dominant markers
 BSA At a locus linked to the trait, using dominant markers Target: AA Aa aA Aa Aa AA aa aa aa aa aa aa Sample of F2 individuals with dominant phenotype harboring the selected locus: this bulk is made using only phenotypic information and homozygote dominants cannot be distinguished from heterozygotes Sample of F2 individuals with recessive phenotype harboring the selected locus: only the homozygote recessive will be included in this bulk, made using only phenotypic information Genotype bulk Genotype bulk

13 BSA In this scheme the resistance (R) gene is linked to an RAPD marker. The susceptible bulk does not have this marker

14 Bulk Segregant Analysis – How to set-up an experiment
 BSA Bulk Segregant Analysis – How to set-up an experiment Create a segregating population from a single cross (for example, F1 or BC progeny) Phenotype the progeny and identify individuals with extreme trait-phenotypes Construct DNA bulks of the individuals displaying the most extreme trait-phenotypes Genotype the parents and the bulks using hundreds to thousands of DNA-markers Identify those markers which distinguish the bulks and the parents

15  BSA example The first published example of BSA = identification of downy mildew genes in lettuce: Michelmore et al. (1991) Identification of markers linked to disease-resistance genes by bulked segregant analysis: a rapid method to detect markers in specific genomic regions by using segregating populations. Proc Nat Acad Sci USA 88:

16 A band from PC6 (primer combination 6) is linked to the resistance
BSA example Ninh Thuan Phd: molecular mapping of blast resistance genes in a traditional Vietnamese rice cultivar (Chiembac) 1-7 are different AFLP- primer combinations, each time tested on the parents and the bulks A band from PC6 (primer combination 6) is linked to the resistance

17 SCAR This marker PC6 could be used to select rice plants at the seedling stage for resistance, without the need for an infection test. However, an AFLP or RAPD are not very practical to use for this purpose (AFLP is complex, RAPD not very reproducible). Therefore, these kind of markers are often converted in to a simple PCR marker, called a SCAR sequence characterised amplified region. This is done by sequencing the DNA band and designing 2 primers to amplify a specific region of it that will reveal the polymorphism.

18 Genetic map In some cases it may be interesting to localise markers on a genetic map: for example 2 AFLP markers linked to rice blast resistance were mapped to chromosome 12 with the help of STR markers that were already on the genetic map (the AFLP markers were genetically linked to those STR). Knowing the map position may help in cloning the gene or to search for more closely linked markers in the neighbourhood

19 Genetic map Software to produce linkage maps Joinmap Mapmaker
Example of website that collects information on genome and genetic research, including genetic maps: on corn

20

21 Example: 1. Creation of mapping population
 Genetic map Example: 1. Creation of mapping population Resistant AB Susceptible CD F1 population (ac; ad; bc; bd)

22 2. detection of polymorphic loci
 Genetic map 2. detection of polymorphic loci SSR markers size std 19479 19477 19478 19480 S R 300 400 500 600 700 STS markers (RGA marker) A B AFLP markers probe A8 R S F1 individuals RFLP markers

23 3. Analysis of segregation of markers
 Genetic map 3. Analysis of segregation of markers

24 3. Analysis of segregation of markers
 Genetic map 3. Analysis of segregation of markers

25 4. Selection of linkage groups
 Genetic map 4. Selection of linkage groups

26 5. Map construction – genetic distances
 Genetic map 5. Map construction – genetic distances

27 Genetic map Use of Linkage Maps Visualize genomic organisation
Fine mapping of genes Map based cloning QTL analysis Comparison of maps Maps of same species Maps of related species (comparative mapping)

28 Introgression In a backcross it is important to have as much of the recurrent genome as fast as possible to speed up the breeding process (less generation times). Molecular markers can be used to screen for this while selecting for the desirable characteristic of the introgression parent. In this way 2 BCs + markers will be better than 4 BCs

29 Introgression Molecular markers are especially interesting to avoid linkage drag : linkage of undesirable characteristics linked to the desired trait. In a first back cross about 300 plants are genotyped to look for a cross-over as close as possible on one side of the desired trait. This plant is then used for the second backcross. In this way 2 back-crosses with molecular analysis are better than 100 random backcrosses.

30  QTL Quantitative trait
Multiple genes affect the expression of the trait The expression in the population is a ‘bell-shaped’ curve: there are many genotypes and there are no clear phenotypic differences among them: Height Frequency distribution If we want to find DNA-markers that can help us to predict this phenotype, we are searching for several genetic loci simultaneously There exist standard experimental approaches for this (e.g. QTL analysis)

31  QTL A QTL is the location of a gene (or set of genes) that affects a trait that is measured on a quantitative scale. Examples of quantitative traits are plant height or grain yield. These traits are typically affected by more than one gene, and also by the environment Mapping QTL is not as simple as mapping a single gene that affects a qualitative because it involves the simultaneous identification of the chromosomal locations of all the genetic factors affecting the trait Tools required: Many polymorphic molecular markers ordered in a linkage map Detailed and accurate phenotypic data of the segregating population Appropriate statistical tools

32 Statistical methods for the detection of QTLs Single marker analysis
Tests for differences in the means of the genetic marker classes: for every polymorphic (-/+) marker the mean of all the – plants is compared with the mean of all the + plants. If these means are different, this indicates linkage of the marker to a gene that has an effect on the quantitative trait. Rough estimation of the location of a QTL

33 Single marker analysis
 QTL Statistical methods for the detection of QTLs Single marker analysis  Robust to violations of normality in phenotypic data The order of the Marker and the QTL on the genetic map remains unknown Low power if the markers are far apart Large progenies required It is not possible to distinguish between size of a QTL effect and it position (relative to the marker): a marker close to a QTL of small effect will give the same ‘signal’ as a marker some distance from a QTL of large effect

34 Statistical methods for the detection of QTLs
Interval mapping (requires linkage map) Estimates the position of a QTL between two markers Systematically searches the genome by calculating a test statistic at each position of the genome Originally based on the maximum likelihood estimates Intervals between adjacent markers along a chromosome are scanned and the LOD of there being one QTL versus no QTL at a particular point is estimated  and : see further.

35 LOD-score = logarithm of the odds =
QTL LOD-score = logarithm of the odds = Logarithm probability together due to linkage probability together due to chance For a good LOD score (>3) it is necessary to have data from a large progeny and many markers. The higher the value of the LOD score, the more likely the data are if there was a QTL present compared to the situation when there is no QTL

36 QTL A LOD-profile is constructed along the chromosome, and the maxima in this profile which exceed a specified significance level, indicate likely sites of a QTL

37 Statistical methods for the detection of QTLs
Interval mapping (requires linkage map)  • By considering several markers simultaneously, it allows accurate estimation of QTL-positions • It is possible to separate the distance and the size of the gene effect  The effect of other QTLs present in the genome is neglected, and only the QTLs with the biggest phenotypic QTL on a chromosome, estimated positions and effect may be biased  Multiple QTL mapping (MQM)

38 Concentration of solids Displayed via LOD over the 12 chromosomes
QTL Example: analysis QTL characteristics in tomato in relation with RFLP markers: Fruit mass pH Concentration of solids Displayed via LOD over the 12 chromosomes

39 QTL

40 QTL

41 QTL

42 Overview different marker applications
Identification individual/cultivar: multilocus SSR (or AFLP) Analysis relationship: Sequence if between genera or species AFLP within genus or species Multilocus SSR within species Overview genome: AFLP, multilocus SSR or SNP Specific marker for diagnosis or for marker assisted breeding SCAR or SNP-detectie


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